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An Advanced Least Squares Twin Multi-class Classification Support Vector Machine for Few-Shot Classification

机译:用于几次分类的高级最小二乘双胞胎多级分类支持向量机

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In classification tasks, deep learning methods yield high performance. However, owing to lack of enough annotated data, deep learning methods often underperformed. Therefore, we propose an advance version of least squares twin multi-class classification support vector machine (ALST-KSVC) which leads to low computational complexity and comparable accuracy based on LST-KSVC for few-shot classification. In ALST-KSVC, we modified optimization problems to construct a new "1-versus-1-versus-1" structure, proposed a new decision function, and constructed smaller number of classifiers than our baseline LST-KSVC. We empirically demonstrate that the proposed method has better classification accuracy than LST-KSVC. Especially, ALST-KSVC achieves the state-of-the-art performance on MNIST, USPS, Amazon, Caltech image datasets and Iris, Teaching evaluation. Balance, Wine, Transfusion UCI datasets.
机译:在分类任务中,深度学习方法会产生高性能。但是,由于缺乏足够的注释数据,深度学习方法往往表现不佳。因此,我们提出了一个预先正方形双层多级分类支持向量机(ALST-KSVC)的预先版本,这导致基于LST-KSVC的低计算复杂性和可比的精度,以实现几次分类。在ALST-KSVC中,我们修改了优化问题以构建新的“1-VERE-1-1-1”结构,提出了一种新的决策功能,并且比我们的基线LST-KSVC构建了较少数量的分类器。我们经验证明该方法具有比LST-KSVC更好的分类精度。特别是,Alst-KSVC在MNIST,USPS,Amazon,CALTECH图像数据集和虹膜上实现了最先进的性能,教学评估。平衡,葡萄酒,输血UCI数据集。

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